# Help speeding up a loop in R

basically i want to perform diagonal averaging in R. Below is some code adapted from the simsalabim package to do the diagonal averaging. Only this is slow.

Any suggestions for vectorizing this instead of using sapply?

``````reconSSA <- function(S,v,group=1){
### S : matrix
### v : vector

N <- length(v)
L <- nrow(S)
K <- N-L+1
XX <- matrix(0,nrow=L,ncol=K)
IND <- row(XX)+col(XX)-1
XX <- matrix(v[row(XX)+col(XX)-1],nrow=L,ncol=K)
XX <- S[,group] %*% t(t(XX) %*% S[,group])

##Diagonal Averaging
.intFun <- function(i,x,ind) mean(x[ind==i])

RC <- sapply(1:N,.intFun,x=XX,ind=IND)
return(RC)
}
``````

For data you could use the following

``````data(AirPassengers)
v <- AirPassengers
L <- 30
T <- length(v)
K <- T-L+1

x.b <- matrix(nrow=L,ncol=K)
x.b <- matrix(v[row(x.b)+col(x.b)-1],nrow=L,ncol=K)
S <- eigen(x.b %*% t(x.b))[["vectors"]]
out <- reconSSA(S, v, 1:10)
``````
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Example data please. –  Joshua Ulrich Oct 27 '10 at 15:25
i added some data. thanks for the reminder. –  pslice Oct 27 '10 at 15:49
Excellent; you'll get much better answers with a reproducible example. –  Joshua Ulrich Oct 27 '10 at 15:53

You can speed up the computation by almost 10 times with the help of a very specialized trick with `rowsum`:

``````reconSSA_1 <- function(S,v,group=1){
### S : matrix
### v : vector
N <- length(v)
L <- nrow(S)
K <- N-L+1
XX <- matrix(0,nrow=L,ncol=K)
IND <- row(XX)+col(XX)-1
XX <- matrix(v[row(XX)+col(XX)-1],nrow=L,ncol=K)
XX <- S[,group] %*% t(t(XX) %*% S[,group])
##Diagonal Averaging
SUMS <- rowsum.default(c(XX), c(IND))
counts <- if(L <= K) c(1:L, rep(L, K-L-1), L:1)
else c(1:K, rep(K, L-K-1), K:1)
c(SUMS/counts)
}

all.equal(reconSSA(S, v, 1:10), reconSSA_1(S, v, 1:10))
[1] TRUE

library(rbenchmark)

benchmark(SSA = reconSSA(S, v, 1:10),
SSA_1 = reconSSA_1(S, v, 1:10),
columns = c( "test", "elapsed", "relative"),
order = "relative")

test elapsed relative
2 SSA_1    0.23   1.0000
1   SSA    2.08   9.0435
``````

[Update: As Joshua suggested it could be speed up even further by using the crux of the rowsum code:

``````reconSSA_2 <- function(S,v,group=1){
### S : matrix
### v : vector
N <- length(v)
L <- nrow(S)
K <- N-L+1
XX <- matrix(0,nrow=L,ncol=K)
IND <- c(row(XX)+col(XX)-1L)
XX <- matrix(v[row(XX)+col(XX)-1],nrow=L,ncol=K)
XX <- c(S[,group] %*% t(t(XX) %*% S[,group]))
##Diagonal Averaging
SUMS <- .Call("Rrowsum_matrix", XX, 1L, IND, 1:N,
TRUE, PACKAGE = "base")
counts <- if(L <= K) c(1:L, rep(L, K-L-1), L:1)
else c(1:K, rep(K, L-K-1), K:1)
c(SUMS/counts)
}

test elapsed  relative
3 SSA_2   0.156  1.000000
2 SSA_1   0.559  3.583333
1   SSA   5.389 34.544872
``````

A speedup of x34.5 comparing to original code!!

]

-
Very nice vectorization with `rowsums`! –  Joshua Ulrich Oct 27 '10 at 20:58
wow. that's great. i hadn't quite thought of it that way. –  pslice Oct 27 '10 at 21:05
You could make it even faster by only using the parts of `rowsums` that you need: (i.e. the `sort(unique(...))` and the `.Call("Rrowsum_matrix", ...)`. –  Joshua Ulrich Oct 27 '10 at 21:10
:) rowsum was written for speed, I wish there were more funcs like this, specialized for grouped operations on arrays. –  VitoshKa Oct 27 '10 at 21:24
@Joshua I remember experimenting with that, a half a year or so ago. It indeed speeds the stuff another 4 times, as far as I could remember. But one small error in inputs and your R session is gone:). Reorder might not be necessary for this example. So it might be quite worth rewriting the rowsum a bit. –  VitoshKa Oct 27 '10 at 21:31

I can't get your example to produce sensible results. I think there are several errors in your function.

1. `XX` is used in `sapply`, but is not defined in the function
2. `sapply` works over `1:N`, where `N=144` in your example, but `x.b` only has 115 columns
3. `reconSSA` simply returns `x`

Regardless, I think you want:

``````data(AirPassengers)
x <- AirPassengers
rowMeans(embed(x,30))
``````

UPDATE: I've re-worked and profiled the function. Most of the time is spent in `mean`, so it may be hard to get this much faster using R code. That said, you can 20% speedup by using `sum` instead.

``````reconSSA <- function(S,v,group=1){

N <- length(v)
L <- nrow(S)
K <- N-L+1
XX <- matrix(0,nrow=L,ncol=K)
IND <- row(XX)+col(XX)-1
XX <- matrix(v[row(XX)+col(XX)-1],nrow=L,ncol=K)
XX <- S[,group] %*% t(t(XX) %*% S[,group])

##Diagonal Averaging
.intFun <- function(i,x,ind) {
I <- ind==i
sum(x[I])/sum(I)
}

RC <- sapply(1:N,.intFun,x=XX,ind=IND)
return(RC)
}
``````
-
That's not quite what I am looking for. The idea is to use the structure of x.b (Hankel) and average the anti-diagonals, since we will seek an approximation of x.b , which will likely not have the proper structure(Hankel), so using diagonal averaging alleviates this problem to some extent. This falls under the topic of singular spectrum analysis. I also fixed the referencing you mentioned. –  pslice Oct 27 '10 at 16:31
I'll take another shot at it if you can explain what you expect the call to `sapply` to do. Your intent is not clear from the code. –  Joshua Ulrich Oct 27 '10 at 16:40
What I am expecting it to do is on the bottom of page 3. See the link for a PDF. bit.ly/ati1ll –  pslice Oct 27 '10 at 18:50
thanks again for your help. this has been extremely helpful. –  pslice Oct 27 '10 at 18:50